Senior Business Intelligence (BI) Analyst

ArvatoConnect
7 months ago
Applications closed

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The Role:

ArvatoConnect is seeking an exceptional Senior Business Intelligence (BI) Analyst to play a pivotal role in shaping strategic decisions through advanced data analysis. As a key member of the Data & Analytics team, you will lead high-impact BI initiatives, translating complex data into actionable insights to support our business growth and operational excellence. This role is ideal for a highly skilled BI professional who thrives on leveraging data to drive meaningful change and who is eager to work in a fast-paced, innovative environment.

The Opportunity:

In this role, you will have the opportunity to design, develop, and implement sophisticated BI solutions that enhance customer experiences, streamline processes, and provide stakeholders with actionable insights. You will work closely with cross-functional teams, mentoring junior analysts, and driving projects that directly impact our business strategy.

This is a home-based role while also engaging with stakeholders and executives at our office locations when needed.

Benefits Include:

Discretionary Annual Bonus - recognising and rewarding your individual contribution to the company's success.
Generous Holiday Entitlement - 25 days annual leave plus 8 bank holidays, with the option to purchase an additional 5 days.
Pension Scheme - 4% employee contribution matched by the company.
Life Insurance - coverage of 4x your basic salary, offering peace of mind for you and your loved ones.
24/7 Health and Wellbeing Support - access to a virtual GP, mental health services, fitness programmes, and more through our WeCare platform.
Exclusive Discounts and Offers - enjoy savings with leading brands via our MyRewards programme, including retailers such as Apple, John Lewis, and M&S.

Key Responsibilities:

Lead the development of BI initiatives, creating scalable data models, and delivering actionable insights through Power BI reports and dashboards.
Drive cross-functional projects that align with business objectives, ensuring data solutions that enhance both internal operations and customer experience.
Mentor junior team members, promoting knowledge sharing and best practices across the BI team.
Engage with stakeholders to gather requirements, understand business needs, and deliver user-friendly BI solutions that enable data-driven decisions.
Optimise Power BI reports for scalability and performance, integrating advanced data analysis techniques to ensure impactful business outcomes.
Stay ahead of emerging BI technologies, driving the adoption of self-service BI tools across the organisation.

Skills and Experience:

5+ years of experience in business intelligence, analytics, or a related field.
Proven expertise in leading BI projects from concept to implementation, with a strong track record of delivering successful outcomes.
Advanced proficiency in Power BI and SQL, including experience in data modelling and integration with Azure Machine Learning.
Strong analytical skills, with experience in statistical techniques such as regression, clustering, and forecasting.
Familiarity with both relational and non-relational databases, dimensional data warehouses, and data integration tools.
Demonstrated ability to engage with stakeholders at all levels, presenting complex data in a clear, actionable format.
Experience mentoring junior analysts, fostering team development and promoting a culture of learning and growth.

Minimum Criteria:

Bachelor's or Master's degree in Computer Science, Information Systems, Analytics, or a related field
5+ years of experience in business intelligence, analytics, or a related field.
Proven experience in leading BI projects from concept to implementation.
Power BI: Advanced proficiency, including integration with Azure Machine Learning.
SQL: Strong capability in data querying and management.
Statistical Analysis: Experience with techniques such as regression, clustering, and forecasting.
Programming: Familiarity with Python or R for data cleaning and advanced analysis.

If you're a strategic thinker, passionate about data, and excited about the opportunity to make a measurable impact, we'd love to hear from you!

Apply Now and shape the future of data-driven decision-making at ArvatoConnect.

Diversity & Inclusion Statement:

It's our differences that make our organisation stronger, and we work to ensure that all our colleagues' voices are heard and that their aspirations are nurtured in a culture where people can grow and be 100% themselves every day, no matter their age, sex, gender, disability, ethnicity, sexuality, neurodiversity, or religion. Not only are we a Disability Confident Committed Employer, but we also believe in continuously strengthening our female talent, standing with the LGBTQI+ community and celebrating our multicultural workforce.Tracking.aspx?Ib6jRYF0K%2bfsMTEPSdtL2JuifTNn0x3me

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